Introduction REU is the abbreviation for Research Experience for Undergraduates. The project on Hazard Mitigation is funded by the National Science Foundation.

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Presentation transcript:

Introduction REU is the abbreviation for Research Experience for Undergraduates. The project on Hazard Mitigation is funded by the National Science Foundation. Our research was conducted at the University of Texas-Arlington with the help of professors and graduate students. Background Information Wind -Affects plume rise, the concentration, and the travel time of the pollutant. -Wind is inversely proportional to concentration. Air Stability -Tells us the amount of vertical motion in the air. -Two categories: Stable and Unstable Atmosphere. Gaussian Dispersion Equation -Used to calculate concentration. -Basis for air dispersion programs. -A three dimensional axis system. HotSpot -Program provides approximation of the radiation effects. -Models short term accidents. -Evaluates and models how a pollutant disperses into the atmosphere. Abstract After 911, the government of the United States was concerned about another terrorist attack and radiological threats. In this study, potential scenarios were examined using HotSpot. We created a scenario of an airborne terrorist attack outside the 2012 Super Bowl using Plutonium-238. The scenario was created based on wind speed, air stability, and the amount of explosives. Methods With our scenario, we inputted information into HotSpot. We ran several tests with different variables to obtain our results. Steps for our Methods: 1. We chose the type of model we needed. 2. We selected type of explosive, amount of explosive, and the MAR (Material at Risk). 3. We then inputted the different meteorological affects. 4. We saved the TEDE Contour File and viewed the Contour plot on Google Earth. After running the tests we were able to choose the worse case scenario. Conclusions By examining the variables, we were able to model the most devastating scenario. The variables that caused the most destruction were wind speed at 2 m/s in a stable environment and a lower amount of explosives. This evidence supports all of the background information we learned about Air Dispersion before we modeled our scenarios. National Science Foundation, The University of Texas at Arlington Works cited Cooper, C. David., and F. C. Alley. "Chapter 20 Atmospheric Dispersion Modeling." Air Pollution Control: a Design Approach. Third ed. Prospect Heights, IL: Waveland, Print. Homann, Steven G. HotSpot. Computer software. National Atmospheric Release Advisory Center (NARAC). Vers Mar Web.. Air Dispersion Modeling: Planning for Airborne Terrorism Release Objective The objective of this project was to investigate a scenario portraying a nuclear terrorist attack using the software HotSpot. Worst Case Scenario: Backpack Stability Class F with a wind speed of 2 m/s Tiffany LeBlanc Baton Rouge Community College Environmental Engineering Gerald Gruber St Mary’s University Engineering Science Dr. Melanie Sattler University of Texas Arlington Professor of Civil Engineering Dr. Yvette Weatherton University of Texas Arlington Professor of Civil Engineering Results Best Case Scenario: Car Stability Class F with a wind speed of 12 m/s Ketwalee Kositkanawuth University of Texas Arlington Graduate Student Joel Hernandez Crosswinds High School Teacher Assistant Outcomes and Impact Worst Case Scenario: -This plot shows a graph of the plume and important measurements. The Inner Contour line effected the population the most due to the highest surface area of deadly radiation. (Figure 7) -If you look at the picture closely you see that the plume covers a large amount of area. This is more damaging because the wind speed was slow and the stability was class F. Both of these factors caused the concentration to be high. (Figure 8) -Here is a picture of the plume that we put onto Google Earth. As you can see, the plume travelled far due to the wind speed. The pollutant was slowly dispersed into the atmosphere because the air was moderately stable. (Figure 9) Best Case Scenario: -We wanted to show you this model so we can compare and contrast the results with our worst case. As you can see the area of the plume is significantly smaller. (Figure 6) -The concentration is spread out quickly over a long land range due to the stability class. Though the stability class is F, moderately stable, the area of impact that is fatal is significantly smaller. This is because of two variables that are different. The wind speed is higher and the amount of explosive is significantly larger. (Figure 5) Figure 1: Air Stability chart Figure 2: Gaussian Dispersion Equation Figure 3: Gaussian Model Figure 4: Total Results Figure 6: TEDE Contour Plot Figure 9: TEDE Contour Plot Figure 5: Table Output Figure 8: TEDE Contour Plot Figure 7: Table Output -This is a table comparing all of our results with the variables of each test run. It has the area of the isopleths with 1000 rem. This is the area of the plume concentration that is fatal. (Figure 4)